Teng Ming, Nathoo Farouk S, Johnson Timothy D
Department of Biostatistics, University of Michigan.
Department of Mathematics and Statistics, University of Victoria.
J Stat Comput Simul. 2017;87(11):2227-2252. doi: 10.1080/00949655.2017.1326117. Epub 2017 May 11.
The Log-Gaussian Cox Process is a commonly used model for the analysis of spatial point pattern data. Fitting this model is difficult because of its doubly-stochastic property, i.e., it is an hierarchical combination of a Poisson process at the first level and a Gaussian Process at the second level. Various methods have been proposed to estimate such a process, including traditional likelihood-based approaches as well as Bayesian methods. We focus here on Bayesian methods and several approaches that have been considered for model fitting within this framework, including Hamiltonian Monte Carlo, the Integrated nested Laplace approximation, and Variational Bayes. We consider these approaches and make comparisons with respect to statistical and computational efficiency. These comparisons are made through several simulation studies as well as through two applications, the first examining ecological data and the second involving neuroimaging data.
对数高斯考克斯过程是用于分析空间点模式数据的常用模型。由于其双重随机特性,即它是一级泊松过程和二级高斯过程的层次组合,拟合该模型很困难。已经提出了各种方法来估计这样一个过程,包括传统的基于似然的方法以及贝叶斯方法。我们在此关注贝叶斯方法以及在此框架内考虑用于模型拟合的几种方法,包括哈密顿蒙特卡罗方法、集成嵌套拉普拉斯近似方法和变分贝叶斯方法。我们考虑这些方法,并在统计和计算效率方面进行比较。这些比较是通过几个模拟研究以及两个应用进行的,第一个应用研究生态数据,第二个应用涉及神经成像数据。